This paper reconsiders a block bootstrap procedure for Quasi Maximum Likelihood estimation of GARCH models, based on the resampling of the likelihood function, as proposed by Goncalves and White [2004. Maximum likelihood and the bootstrap for nonlinear dynamic models. journal of Econometrics 119, 199-219]. First, we provide necessary conditions and sufficient conditions, in terms of moments of the innovation process, for the existence of the Edgeworth expansion of the GARCH(l,l) estimator, up to the k-th term. Second, we provide sufficient conditions for higher order refinements for equally tailed and symmetric test statistics. in particular, the bootstrap estimator based on resampling the likelihood has the same higher order improvements i...
In setting up the (quasi) maximum likelihood (QML) estimation of the unknown parameters of a GARCH m...
This paper studies the quasi-maximum likelihood estimator (QMLE) for the generalized autoregressive ...
ARCH and GARCH models directly address the dependency of conditional second moments, and have proved...
This paper reconsiders a block bootstrap procedure for Quasi Maximum Likelihood estimation of GARCH ...
This paper reconsiders a block bootstrap procedure for Quasi Maximum Likelihood esti-mation of GARCH...
GARCH models are useful tools in the investigation of phenomena, where volatility changes are promin...
We develop order T−1 asymptotic expansions for the quasi-maximum likelihood estimator (QMLE) and a t...
The bootstrap is an increasingly popular method for performing statistical inference. This paper pro...
We consider the weighted bootstrap approximation of the distribution of a class of M-estimators of t...
We propose a closed-form estimator for the linear GARCH(1,1) model. The es-timator has the advantage...
This note can be considered as a continuation of a nice paper from Francq and Zakoian (2012) concern...
This article applies a novel bootstrap method, the kernel block bootstrap (KBB), to quasi‐maximum li...
Consider a class of power transformed and threshold GARCH(p,q) (PTTGRACH(p,q)) model, which is a nat...
We consider a class of M-estimators of the parameters of a GARCH (p,q) model. These estimators invol...
This paper investigates the sampling behavior of the quasi-maximum likelihood estimator of the Gauss...
In setting up the (quasi) maximum likelihood (QML) estimation of the unknown parameters of a GARCH m...
This paper studies the quasi-maximum likelihood estimator (QMLE) for the generalized autoregressive ...
ARCH and GARCH models directly address the dependency of conditional second moments, and have proved...
This paper reconsiders a block bootstrap procedure for Quasi Maximum Likelihood estimation of GARCH ...
This paper reconsiders a block bootstrap procedure for Quasi Maximum Likelihood esti-mation of GARCH...
GARCH models are useful tools in the investigation of phenomena, where volatility changes are promin...
We develop order T−1 asymptotic expansions for the quasi-maximum likelihood estimator (QMLE) and a t...
The bootstrap is an increasingly popular method for performing statistical inference. This paper pro...
We consider the weighted bootstrap approximation of the distribution of a class of M-estimators of t...
We propose a closed-form estimator for the linear GARCH(1,1) model. The es-timator has the advantage...
This note can be considered as a continuation of a nice paper from Francq and Zakoian (2012) concern...
This article applies a novel bootstrap method, the kernel block bootstrap (KBB), to quasi‐maximum li...
Consider a class of power transformed and threshold GARCH(p,q) (PTTGRACH(p,q)) model, which is a nat...
We consider a class of M-estimators of the parameters of a GARCH (p,q) model. These estimators invol...
This paper investigates the sampling behavior of the quasi-maximum likelihood estimator of the Gauss...
In setting up the (quasi) maximum likelihood (QML) estimation of the unknown parameters of a GARCH m...
This paper studies the quasi-maximum likelihood estimator (QMLE) for the generalized autoregressive ...
ARCH and GARCH models directly address the dependency of conditional second moments, and have proved...